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Research Project
Characterisation of host cell pathways altered by effectors of Brucella, Chlamydia, and Coxiella: identification of novel therapeutic targets
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Impact of Loci Nature on Estimating Recombination and Mutation Rates in Chlamydia trachomatis
Publication . Ferreira, Rita; Borges, Vítor; Nunes, Alexandra; Nogueira, Paulo; Borrego, Maria José; Gomes, João Paulo
The knowledge of the frequency and relative weight of mutation and recombination events in evolution is essential for understanding how microorganisms reach fitted phenotypes. Traditionally, these evolutionary parameters have been inferred by using data from multilocus sequence typing (MLST), which is known to have yielded conflicting results. In the near future, these estimations will certainly be performed by
computational analyses of full-genome sequences. However, it is not known whether this approach will yield
accurate results as bacterial genomes exhibit heterogeneous representation of loci categories, and it is not
clear how loci nature impacts such estimations. Therefore, we assessed how mutation and recombination
inferences are shaped by loci with different genetic features, using the bacterium Chlamydia trachomatis as
the study model. We found that loci assigning a high number of alleles and positively selected genes
yielded nonconvergent estimates and incongruent phylogenies and thus are more prone to confound
algorithms. Unexpectedly, for the model under evaluation, housekeeping genes and noncoding regions
shaped estimations in a similar manner, which points to a nonrandom role of the latter in C. trachomatis
evolution. Although the present results relate to a specific bacterium, we speculate that microbe-specific
genomic architectures (such as coding capacity, polymorphism dispersion, and fraction of positively selected
loci) may differentially buffer the effect of the confounding factors when estimating recombination and mutation rates and, thus, influence the accuracy of using full-genome sequences for such purpose. This
putative bias associated with in silico inferences should be taken into account when discussing the results
obtained by the analyses of full-genome sequences, in which the “one size fits all” approach may not be
applicable.
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Funding agency
Fundação para a Ciência e a Tecnologia
Funding programme
3599-PPCDT
Funding Award Number
ERA-PTG/0004/2010